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f3ae13b660e8363a
Generalization bounds for data-driven numerical linear algebra
Peter Bartlett; Piotr Indyk; Tal Wagner
2022
8bcec88e19e8efb8
Recycling Krylov subspaces for sequences of linear systems
L Michael; Eric Parks; Greg De Sturler; Duane D Mackey; Spandan Johnson; Maiti
2006
f50f6eb3bae04fb2
A PAC Approach to Application-Specific Algorithm Selection
Rishi Gupta; Tim Roughgarden
2017
10.1137/15m1050276
86c85058cf3d13f3
Learning algebraic multigrid using graph neural networks
Ilay Luz; Meirav Galun; Haggai Maron; Ronen Basri; Irad Yavneh
2020
21e37fc49a4a96b0
Parametric complexity bounds for approximating PDEs with neural networks
Tanya Marwah; Zachary C Lipton; Andrej Risteski
2021
7cc0b5eb60c6d386
Adaptive gradient-based meta-learning methods
Mikhail Khodak; Maria-Florina Balcan; Ameet Talwalkar
2019
ef3fbe50ae8b1416
On restarted and deflated block FOM and GMRES methods for sequences of shifted linear systems
Lakhdar Elbouyahyaoui; Mohammed Heyouni; Azita Tajaddini; Farid Saberi-Movahed
2021
8b47e61b6091c170
Graph Data
Justin Y Chen; Sandeep Silwal; Ali Vakilian; Fred Zhang
2022
10.1017/9781108564175.006
c9672019fd39df6b
Efficient preconditioning of sequences of nonsymmetric linear systems
D Jurjen; Miroslav Tebbens; Tůma
2007
70a83eaf27ba61ae
Learning preconditioners for conjugate gradient PDE solvers
Yichen Li; Tao Peter Yichen Chen; Wojciech Du; Matusik
2023
578a2d6d4f82a424
Learning-to-learn stochastic gradient descent with biased regularization
Giulia Denevi; Carlo Ciliberto; Riccardo Grazzi; Massimiliano Pontil
2019
9384ad97652ef738
Physics-Informed Neural Operator for Learning Partial Differential Equations
Zongyi Li; Hongkai Zheng; Nikola Kovachki; David Jin; Haoxuan Chen; Burigede Liu; Kamyar Azizzadenesheli; Anima Anandkumar
2021
10.1145/3648506
847837f06eb045c3
Discrete-convex-analysis-based framework for warm-starting algorithms with predictions
Shinsaku Sakaue; Taihei Oki
2022
00eb683c5c5954ba
A sample complexity separation between non-convex and convex meta-learning
Nikunj Saunshi; Yi Zhang; Mikhail Khodak; Sanjeev Arora
2020
bf0caf72038d4812
A nonstochastic control approach to optimization
Xinyi Chen; Elad Hazan
2023
ae31d4770a37446d
Physics-informed machine learning
Em George; Ioannis G Karniadakis; Lu Kevrekidis; Paris Lu; Sifan Perdikaris; Liu Wang; Yang
2021
ad84d697599031d6
Data-Driven Algorithm Design
Maria-Florina Balcan
2021
10.1017/9781108637435.036
ce1d2cd93055fb8f
Tutorial on Amortized Optimization
Brandon Amos
2023
10.1561/2200000102
2d33e9c1e2a496ed
Optimization-based algebraic multigrid coarsening using reinforcement learning
Ali Taghibakhshi; Scott Maclachlan; Luke Olson; Matthew West
2021
bd8e444c2dec8114
End-to-end learning to warm-start for real-time quadratic optimization
Rajiv Sambharya; Georgina Hall; Brandon Amos; Bartolomeo Stellato
2023
514f0d0a7ba0f9bb
9 Machine learning
Sohei Arisaka; Qianxiao Li
2023
10.1515/9783111055404-009
339a77d237e51bb6
Dispersion for Data-Driven Algorithm Design, Online Learning, and Private Optimization
Maria-Florina Balcan; Travis Dick; Ellen Vitercik
2018
10.1109/focs.2018.00064
7bc856d839dab88e
Accelerating ERM for data-driven algorithm design using output-sensitive techniques
Maria-Florina Balcan; Christopher Seiler; Dravyansh Sharma
2022
10.52202/079017-2313
63c8c8e2c1c19bdc
Algorithms with predictions
Michael Mitzenmacher; Sergei Vassilvitskii
2021
e8f4ce540a07aaa8
Learning predictions for algorithms with predictions
Mikhail Khodak; Maria-Florina Balcan; Ameet Talwalkar; Sergei Vassilvitskii
2022
2afe80691c4a168d
Faster matchings via learned duals
Michael Dinitz; Sungjin Im; Thomas Lavastida; Benjamin Moseley; Sergei Vassilvitskii
2021
8c6e996915f58146
Semi-bandit optimization in the dispersed setting
Maria-Florina Balcan; Travis Dick; Wesley Pegden
2020
7667b3ff85285f65
Independent mechanism analysis, a new concept?
Luigi Gresele; Vincent Julius Von Kügelgen; Bernhard Stimper; Michel Schölkopf; Besserve
2021
5daf44ed6a715142
First Steps Toward Understanding the Extrapolation of Nonlinear Models to Unseen Domains
Kefan Dong; Tengyu Ma
September 2022
a7829b3e246d1d98
Toward compositional generalization in object-oriented world modeling
Linfeng Zhao; Lingzhi Kong; Robin Walters; Lawson Ls Wong
2022
a57641daf1952ead
When is unsupervised disentanglement possible?
Daniella Horan; Eitan Richardson; Yair Weiss
2021
887d368dd2882bca
Generative replay for compositional visual understanding in the prefrontal-hippocampal circuit
Philipp Schwartenbeck; Alon Baram; Yunzhe Liu; Shirley Mark; Timothy Muller; Raymond Dolan; Matthew Botvinick; Zeb Kurth-Nelson; Timothy Behrens
2021
10.1101/2021.06.06.447249
c953fb3cfc684c45
Constructing future behaviour in the hippocampal formation through composition and replay
J W Jacob; Joseph Bakermans; Warren; C R James; Timothy E J Whittington; Behrens
2023
10.1101/2023.04.07.536053
135c9b8e1f806ed3
The autoencoding variational autoencoder
Taylan Cemgil; Sumedh Ghaisas; Krishnamurthy Dvijotham; Sven Gowal; Pushmeet Kohli
2020
c2040814af72bf1b
Identification analysis in models with unrestricted latent variables: Fixed effects and initial conditions
Sébastien Lachapelle; Divyat Mahajan; Ioannis Mitliagkas; Simon Lacoste-Julien
2023
10.47004/wp.cem.2023.2023
0521e67c6fe0f248
Function classes for identifiable nonlinear independent component analysis
Simon Buchholz; Michel Besserve; Bernhard Schölkopf
2022
57fceea12bb79c1e
Compositional generalization from first principles
Thaddäus Wiedemer; Prasanna Mayilvahanan; Matthias Bethge; Wieland Brendel
2023
770652cbdd230cb7
Learning to Extrapolate: A Transductive Approach
Aviv Netanyahu; Abhishek Gupta; Max Simchowitz; Kaiqing Zhang; Pulkit Agrawal
February 2023
4a27891bc5fdc0c3
Provably learning object-centric representations
Jack Brady; Roland S Zimmermann; Yash Sharma; Bernhard Schölkopf; Julius Von Kügelgen; Wieland Brendel
Jul 2023
3ef891cf3de599c2
DreamCoder: growing generalizable, interpretable knowledge with wake–sleep Bayesian program learning
Kevin Ellis; Lionel Wong; Maxwell Nye; Mathias Sablé-Meyer; Luc Cary; Lore Anaya Pozo; Luke Hewitt; Armando Solar-Lezama; Joshua B Tenenbaum
2251. 2023
10.1098/rsta.2022.0050
cb8333841595450d
Consistency regularization for variational auto-encoders
Samarth Sinha; Adji Bousso; Dieng
2021
96668723f36b6c53
Replay and compositional computation
Zeb Kurth-Nelson; Timothy Behrens; Greg Wayne; Kevin J Miller; Lennart Luettgau; Ray Dolan; Yunzhe Liu; Philipp Schwartenbeck
2022
10.1016/j.neuron.2022.12.028
8e421af7fc7d1841
Identifiable deep generative models via sparse decoding
Gemma Elyse Moran; Dhanya Sridhar; Yixin Wang; David Blei
2022
af0a51470832d161
Exploring the latent space of autoencoders with interventional assays
Felix Leeb; Stefan Bauer; Michel Besserve; Bernhard Schölkopf
2022
3d1cb2d51aa7ccae
Nonlinear independent component analysis for principled disentanglement in unsupervised deep learning
Aapo Hyvärinen; Ilyes Khemakhem; Hiroshi Morioka
2016
10.1016/j.patter.2023.100844
4063954e55cf0de2
On the identifiability of nonlinear ICA: sparsity and beyond
Yujia Zheng; Ignavier Ng; Kun Zhang
2022
41b29f6ec96946f4
Object-centric compositional imagination for visual abstract reasoning
Rim Assouel; Pau Rodriguez; Perouz Taslakian; David Vazquez; Yoshua Bengio
2022
a4542b959a9e1d0a
A Discourse-Aware Attention Model for Abstractive Summarization of Long Documents
Arman Cohan; Franck Dernoncourt; Doo Soon Kim; Trung Bui; Seokhwan Kim; Walter Chang; Nazli Goharian
June 2018
10.18653/v1/n18-2097
8ecaa5277a7cccab
The Devil Is in the Errors: Leveraging Large Language Models for Fine-grained Machine Translation Evaluation
Patrick Fernandes; Daniel Deutsch; Mara Finkelstein; Parker Riley; André Martins; Graham Neubig; Ankush Garg; Jonathan Clark; Markus Freitag; Orhan Firat
2023
10.18653/v1/2023.wmt-1.100
e5a063dac45872bc
LongEval: Guidelines for Human Evaluation of Faithfulness in Long-form Summarization
Kalpesh Krishna; Erin Bransom; Bailey Kuehl; Mohit Iyyer; Pradeep Dasigi; Arman Cohan; Kyle Lo
2023
10.18653/v1/2023.eacl-main.121
1474033f13762540
Judging llm-as-a-judge with mt-bench and chatbot arena
Lianmin Zheng; Wei-Lin Chiang; Ying Sheng; Siyuan Zhuang; Zhanghao Wu; Yonghao Zhuang; Zi Lin; Zhuohan Li; Dacheng Li; Eric Xing
2023
fe83342fe9788283
Gptscore: Evaluate as you desire
Jinlan Fu; See-Kiong Ng; Zhengbao Jiang; Pengfei Liu
2023
d3dd5621aa88934c
Is ChatGPT a Good NLG Evaluator? A Preliminary Study
Jiaan Wang; Yunlong Liang; Fandong Meng; Zengkui Sun; Haoxiang Shi; Zhixu Li; Jinan Xu; Jianfeng Qu; Jie Zhou
2023
10.18653/v1/2023.newsum-1.1
516992492c9e0005
Recursively summarizing books with human feedback
Jeff Wu; Long Ouyang; Daniel M Ziegler; Nisan Stiennon; Ryan Lowe; Jan Leike; Paul Christiano
2021
0f457873ec41d01a
BOOKSUM: A Collection of Datasets for Long-form Narrative Summarization
Wojciech Kryscinski; Nazneen Rajani; Divyansh Agarwal; Caiming Xiong; Dragomir Radev
December 2022
10.18653/v1/2022.findings-emnlp.488
3925f02d4c5aa3c5
BillSum: A corpus for automatic summarization of US legislation
Anastassia Kornilova; Vladimir Eidelman
November 2019
10.18653/v1/D19-5406
9a264c1c6b7f6748
Long document summarization with top-down and bottom-up inference
Bo Pang; Erik Nijkamp; Wojciech Kryściński; Silvio Savarese; Yingbo Zhou; Caiming Xiong
2023
c012dbd383527c46
AWESOME: GPU Memory-constrained Long Document Summarization using Memory Mechanism and Global Salient Content
Shuyang Cao; Lu Wang
2023
10.18653/v1/2024.naacl-long.330
5b259be76a545f9d
Revisiting the Gold Standard: Grounding Summarization Evaluation with Robust Human Evaluation
Yixin Liu; Alex Fabbri; Pengfei Liu; Yilun Zhao; Linyong Nan; Ruilin Han; Simeng Han; Shafiq Joty; Chien-Sheng Wu; Caiming Xiong; Dragomir Radev
July 2023c
10.18653/v1/2023.acl-long.228
ff16aff6c4914eeb
Alpacafarm: A simulation framework for methods that learn from human feedback
Yann Dubois; Xuechen Li; Rohan Taori; Tianyi Zhang; Ishaan Gulrajani; Jimmy Ba; Carlos Guestrin; Percy Liang; Tatsunori B Hashimoto
2023
f98588dc21164a73
SQuALITY: Building a Long-Document Summarization Dataset the Hard Way
Alex Wang; Richard Yuanzhe Pang; Angelica Chen; Jason Phang; Samuel R Bowman
2022
10.18653/v1/2022.emnlp-main.75
0b86d375a5d13f12
From Sparse to Dense: GPT-4 Summarization with Chain of Density Prompting
Griffin Adams; Alex Fabbri; Faisal Ladhak; Eric Lehman; Noémie Elhadad
2023
10.18653/v1/2023.newsum-1.7
e0963d3ac6f51d6f
Adapting Pretrained Text-to-Text Models for Long Text Sequences
Wenhan Xiong; Anchit Gupta; Shubham Toshniwal; Yashar Mehdad; Scott Yih
2022
10.18653/v1/2023.findings-emnlp.370
12c16108f2df7cf2
FActScore: Fine-grained Atomic Evaluation of Factual Precision in Long Form Text Generation
Sewon Min; Kalpesh Krishna; Xinxi Lyu; Mike Lewis; Wen-Tau Yih; Pang Koh; Mohit Iyyer; Luke Zettlemoyer; Hannaneh Hajishirzi
2023
10.18653/v1/2023.emnlp-main.741
e5135cd811e20ed2
Experts, errors, and context: A large-scale study of human evaluation for machine translation
Markus Freitag; George Foster; David Grangier; Viresh Ratnakar; Qijun Tan; Wolfgang Macherey
2021
10.1162/tacla00437
64fbc35907476f08
Rollout, Policy Iteration, and Distributed Reinforcement Learning [Book Review]
Dimitri P Bertsekas; Maryam Kamgarpour
August 2020
10.1109/mcs.2025.3615016
d247d32f0d5cd297
Tree-Based Batch Mode Reinforcement Learning
Damien Ernst; Pierre Geurts; Louis Wehenkel
2005
f861c218b4b2d4f8
Complexity analysis of real-time reinforcement learning
Sven Koenig; Reid G Simmons
July 1993
461b333b09a17365
The Statistical Complexity of Interactive Decision Making
Dylan J Foster; M Sham; Jian Kakade; Alexander Qian; Rakhlin
December 2021
95c33ce76502c327
Episodic Reinforcement Learning in Finite MDPs: Minimax Lower Bounds Revisited
Omar Darwiche Domingues; Pierre Ménard; Emilie Kaufmann; Michal Valko
March 2021
30ad8df3af2f66f4
Contextual Decision Processes with low Bellman rank are PAC-Learnable
Nan Jiang; Akshay Krishnamurthy; Alekh Agarwal; John Langford; Robert E Schapire
July 2017
0c896a5113b2d212
When Simple Exploration is Sample Efficient: Identifying Sufficient Conditions for Random Exploration to Yield PAC RL Algorithms
Yao Liu; Emma Brunskill
April 2019
d56dc5f9ad024c9f
Root-n-Regret for Learning in Markov Decision Processes with Function Approximation and Low Bellman Rank
Kefan Dong; Jian Peng; Yining Wang; Yuan Zhou
July 2020
600e6c260dcbf4b1
Guarantees for Epsilon-Greedy Reinforcement Learning with Function Approximation
Chris Dann; Yishay Mansour; Mehryar Mohri; Ayush Sekhari; Karthik Sridharan
June 2022
e2b43811b6e6ad66
On an iterative technique for Riccati equation computations
D Kleinman
February 1968
10.1109/tac.1968.1098829
07c18e53f1053342
Sample Efficient Reinforcement Learning In Continuous State Spaces: A Perspective Beyond Linearity
Dhruv Malik; Aldo Pacchiano; Vishwak Srinivasan; Yuanzhi Li
July 2021
e715e4897123dd4d
Bilinear Classes: A Structural Framework for Provable Generalization in RL
Simon Du; Sham Kakade; Jason Lee; Shachar Lovett; Gaurav Mahajan; Wen Sun; Ruosong Wang
July 2021
919409b9aa1919b3
Finite-Time Bounds for Fitted Value Iteration
Rémi Munos; Csaba Szepesvári
2008
cefb95fcecdf1f18
Model-based RL in Contextual Decision Processes: PAC bounds and Exponential Improvements over Model-free Approaches
Wen Sun; Nan Jiang; Akshay Krishnamurthy; Alekh Agarwal; John Langford
June 2019
7a2d2c7530dbac51
Is Q-learning Provably Efficient?
Chi Jin; Zeyuan Allen-Zhu; Sebastien Bubeck; Michael I Jordan
July 2018
b361c7601c5fc877
Bridging RL Theory and Practice with the Effective Horizon
Cassidy Laidlaw; Stuart Russell; Anca Dragan
2023
9b9bdc439fffc353
Improve Agents without Retraining: Parallel Tree Search with Off-Policy Correction
Assaf Hallak; Gal Dalal; Steven Dalton; Iuri Frosio; Shie Mannor; Gal Chechik
February 2023
5c11e8e8854b787c
Minimax Regret Bounds for Reinforcement Learning
Mohammad Gheshlaghi Azar; Ian Osband; Rémi Munos
July 2017
7bb4e8e785e621f1
A General Framework for Sample-Efficient Function Approximation in Reinforcement Learning
Zixiang Chen; Chris Junchi Li; Huizhuo Yuan; Quanquan Gu; Michael Jordan
September 2022
3afc10eb2a1f8356
Revisiting the arcade learning environment: Evaluation protocols and open problems for general agents
C Marlos; Marc G Machado; Erik Bellemare; Joel Talvitie; Matthew Veness; Michael Hausknecht; Bowling
2018
004ea6da2a333a07
Model-Based Offline Planning
Arthur Argenson; Gabriel Dulac-Arnold
March 2021
3742b90471d2fec9
Lessons from AlphaZero for Optimal, Model Predictive, and Adaptive Control
Dimitri P Bertsekas
March 2022
cd250b142884c381
On the Convergence of Policy Iteration in Stationary Dynamic Programming
Martin L Puterman; Shelby L Brumelle
1979
10.1287/moor.4.1.60
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